57 research outputs found
Operating ITS-G5 DSRC over Unlicensed Bands: A City-Scale Performance Evaluation
Future Connected and Autonomous Vehicles (CAVs) will be equipped with a large
set of sensors. The large amount of generated sensor data is expected to be
exchanged with other CAVs and the road-side infrastructure. Both in Europe and
the US, Dedicated Short Range Communications (DSRC) systems, based on the IEEE
802.11p Physical Layer, are key enabler for the communication among vehicles.
Given the expected market penetration of connected vehicles, the licensed band
of 75 MHz, dedicated to DSRC communications, is expected to become increasingly
congested. In this paper, we investigate the performance of a vehicular
communication system, operated over the unlicensed bands 2.4 GHz - 2.5 GHz and
5.725 GHz - 5.875 GHz. Our experimental evaluation was carried out in a testing
track in the centre of Bristol, UK and our system is a full-stack ETSI ITS-G5
implementation. Our performance investigation compares key communication
metrics (e.g., packet delivery rate, received signal strength indicator)
measured by operating our system over the licensed DSRC and the considered
unlicensed bands. In particular, when operated over the 2.4 GHz - 2.5 GHz band,
our system achieves comparable performance to the case when the DSRC band is
used. On the other hand, as soon as the system, is operated over the 5.725 GHz
- 5.875 GHz band, the packet delivery rate is 30% smaller compared to the case
when the DSRC band is employed. These findings prove that operating our system
over unlicensed ISM bands is a viable option. During our experimental
evaluation, we recorded all the generated network interactions and the complete
data set has been publicly available.Comment: IEEE PIMRC 2019, to appea
Agile Calibration Process of Full-Stack Simulation Frameworks for V2X Communications
Computer simulations and real-world car trials are essential to investigate
the performance of Vehicle-to-Everything (V2X) networks. However, simulations
are imperfect models of the physical reality and can be trusted only when they
indicate agreement with the real-world. On the other hand, trials lack
reproducibility and are subject to uncertainties and errors. In this paper, we
will illustrate a case study where the interrelationship between trials,
simulation, and the reality-of-interest is presented. Results are then compared
in a holistic fashion. Our study will describe the procedure followed to
macroscopically calibrate a full-stack network simulator to conduct
high-fidelity full-stack computer simulations.Comment: To appear in IEEE VNC 2017, Torino, I
Beam Alignment for Millimetre Wave Links with Motion Prediction of Autonomous Vehicles
Intelligent Transportation Systems (ITSs) require ultra-low end-to-end delays
and multi-gigabit-per-second data transmission. Millimetre Waves (mmWaves)
communications can fulfil these requirements. However, the increased mobility
of Connected and Autonomous Vehicles (CAVs), requires frequent beamforming -
thus introducing increased overhead. In this paper, a new beamforming algorithm
is proposed able to achieve overhead-free beamforming training. Leveraging from
the CAVs sensory data, broadcast with Dedicated Short Range Communications
(DSRC) beacons, the position and the motion of a CAV can be estimated and
beamform accordingly. To minimise the position errors, an analysis of the
distinct error components was presented. The network performance is further
enhanced by adapting the antenna beamwidth with respect to the position error.
Our algorithm outperforms the legacy IEEE 802.11ad approach proving it a viable
solution for the future ITS applications and services.Comment: Proc. of IET Colloquium on Antennas, Propagation & RF Technology for
Transport and Autonomous Platforms, to appea
Past, Present, Future: A Comprehensive Exploration of AI Use Cases in the UMBRELLA IoT Testbed
UMBRELLA is a large-scale, open-access Internet of Things (IoT) ecosystem
incorporating over 200 multi-sensor multi-wireless nodes, 20 collaborative
robots, and edge-intelligence-enabled devices. This paper provides a guide to
the implemented and prospective artificial intelligence (AI) capabilities of
UMBRELLA in real-world IoT systems. Four existing UMBRELLA applications are
presented in detail: 1) An automated streetlight monitoring for detecting
issues and triggering maintenance alerts; 2) A Digital twin of building
environments providing enhanced air quality sensing with reduced cost; 3) A
large-scale Federated Learning framework for reducing communication overhead;
and 4) An intrusion detection for containerised applications identifying
malicious activities. Additionally, the potential of UMBRELLA is outlined for
future smart city and multi-robot crowdsensing applications enhanced by
semantic communications and multi-agent planning. Finally, to realise the above
use-cases we discuss the need for a tailored MLOps platform to automate
UMBRELLA model pipelines and establish trust.Comment: 6 pgaes, 4 figures. This work has been accepted by PerCom TrustSense
workshop 202
Agile Data Offloading over Novel Fog Computing Infrastructure for CAVs
Future Connected and Automated Vehicles (CAVs) will be supervised by
cloud-based systems overseeing the overall security and orchestrating traffic
flows. Such systems rely on data collected from CAVs across the whole city
operational area. This paper develops a Fog Computing-based infrastructure for
future Intelligent Transportation Systems (ITSs) enabling an agile and reliable
off-load of CAV data. Since CAVs are expected to generate large quantities of
data, it is not feasible to assume data off-loading to be completed while a CAV
is in the proximity of a single Road-Side Unit (RSU). CAVs are expected to be
in the range of an RSU only for a limited amount of time, necessitating data
reconciliation across different RSUs, if traditional approaches to data
off-load were to be used. To this end, this paper proposes an agile Fog
Computing infrastructure, which interconnects all the RSUs so that the data
reconciliation is solved efficiently as a by-product of deploying the Random
Linear Network Coding (RLNC) technique. Our numerical results confirm the
feasibility of our solution and show its effectiveness when operated in a
large-scale urban testbed.Comment: To appear in IEEE VTC-Spring 201
DRIVE: A Digital Network Oracle for Cooperative Intelligent Transportation Systems
In a world where Artificial Intelligence revolutionizes inference, prediction
and decision-making tasks, Digital Twins emerge as game-changing tools. A case
in point is the development and optimization of Cooperative Intelligent
Transportation Systems (C-ITSs): a confluence of cyber-physical digital
infrastructure and (semi)automated mobility. Herein we introduce Digital Twin
for self-dRiving Intelligent VEhicles (DRIVE). The developed framework tackles
shortcomings of traditional vehicular and network simulators. It provides a
flexible, modular, and scalable implementation to ensure large-scale, city-wide
experimentation with a moderate computational cost. The defining feature of our
Digital Twin is a unique architecture allowing for submission of sequential
queries, to which the Digital Twin provides instantaneous responses with the
"state of the world", and hence is an Oracle. With such bidirectional
interaction with external intelligent agents and realistic mobility traces,
DRIVE provides the environment for development, training and optimization of
Machine Learning based C-ITS solutions.Comment: Accepted for publication at IEEE ISCC 202
On Urban Traffic Flow Benefits of Connected and Automated Vehicles
Automated Vehicles are an integral part of Intelligent Transportation Systems
(ITSs) and are expected to play a crucial role in the future mobility services.
This paper investigates two classes of self-driving vehicles: (i) Level 4&5
Automated Vehicles (AVs) that rely solely on their on-board sensors for
environmental perception tasks, and (ii) Connected and Automated Vehicles
(CAVs), leveraging connectivity to further enhance perception via driving
intention and sensor information sharing. Our investigation considers and
quantifies the impact of each vehicle group in large urban road networks in
Europe and in the USA. The key performance metrics are the traffic congestion,
average speed and average trip time. Specifically, the numerical studies show
that the traffic congestion can be reduced by up to a factor of four, while the
average flow speeds of CAV group remains closer to the speed limits and can be
up to 300% greater than the human-driven vehicles. Finally, traffic situations
are also studied, indicating that even a small market penetration of CAVs will
have a substantial net positive effect on the traffic flows.Comment: Accepted to IEEE VTC-Spring 2020, Antwerp, Belgiu
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